Cargando…

Improving Provider Adoption With Adaptive Clinical Decision Support Surveillance: An Observational Study

BACKGROUND: Successful clinical decision support (CDS) tools can help use evidence-based medicine to effectively improve patient outcomes. However, the impact of these tools has been limited by low provider adoption due to overtriggering, leading to alert fatigue. We developed a tracking mechanism f...

Descripción completa

Detalles Bibliográficos
Autores principales: Khan, Sundas, Richardson, Safiya, Liu, Andrew, Mechery, Vinodh, McCullagh, Lauren, Schachter, Andy, Pardo, Salvatore, McGinn, Thomas
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6401673/
https://www.ncbi.nlm.nih.gov/pubmed/30785410
http://dx.doi.org/10.2196/10245
_version_ 1783400197625217024
author Khan, Sundas
Richardson, Safiya
Liu, Andrew
Mechery, Vinodh
McCullagh, Lauren
Schachter, Andy
Pardo, Salvatore
McGinn, Thomas
author_facet Khan, Sundas
Richardson, Safiya
Liu, Andrew
Mechery, Vinodh
McCullagh, Lauren
Schachter, Andy
Pardo, Salvatore
McGinn, Thomas
author_sort Khan, Sundas
collection PubMed
description BACKGROUND: Successful clinical decision support (CDS) tools can help use evidence-based medicine to effectively improve patient outcomes. However, the impact of these tools has been limited by low provider adoption due to overtriggering, leading to alert fatigue. We developed a tracking mechanism for monitoring trigger (percent of total visits for which the tool triggers) and adoption (percent of completed tools) rates of a complex CDS tool based on the Wells criteria for pulmonary embolism (PE). OBJECTIVE: We aimed to monitor and evaluate the adoption and trigger rates of the tool and assess whether ongoing tool modifications would improve adoption rates. METHODS: As part of a larger clinical trial, a CDS tool was developed using the Wells criteria to calculate pretest probability for PE at 2 tertiary centers’ emergency departments (EDs). The tool had multiple triggers: any order for D-dimer, computed tomography (CT) of the chest with intravenous contrast, CT pulmonary angiography (CTPA), ventilation-perfusion scan, or lower extremity Doppler ultrasound. A tracking dashboard was developed using Tableau to monitor real-time trigger and adoption rates. Based on initial low provider adoption rates of the tool, we conducted small focus groups with key ED providers to elicit barriers to tool use. We identified overtriggering of the tool for non-PE-related evaluations and inability to order CT testing for intermediate-risk patients. Thus, the tool was modified to allow CT testing for the intermediate-risk group and not to trigger for CT chest with intravenous contrast orders. A dialogue box, “Are you considering PE for this patient?” was added before the tool triggered to account for CTPAs ordered for aortic dissection evaluation. RESULTS: In the ED of tertiary center 1, 95,295 patients visited during the academic year. The tool triggered for an average of 509 patients per month (average trigger rate 2036/30,234, 6.73%) before the modifications, reducing to 423 patients per month (average trigger rate 1629/31,361, 5.22%). In the ED of tertiary center 2, 88,956 patients visited during the academic year, with the tool triggering for about 473 patients per month (average trigger rate 1892/29,706, 6.37%) before the modifications and for about 400 per month (average trigger rate 1534/30,006, 5.12%) afterward. The modifications resulted in a significant 4.5- and 3-fold increase in provider adoption rates in tertiary centers 1 and 2, respectively. The modifications increased the average monthly adoption rate from 23.20/360 (6.5%) tools to 81.60/280.20 (29.3%) tools and 46.60/318.80 (14.7%) tools to 111.20/263.40 (42.6%) tools in centers 1 and 2, respectively. CONCLUSIONS: Close postimplementation monitoring of CDS tools may help improve provider adoption. Adaptive modifications based on user feedback may increase targeted CDS with lower trigger rates, reducing alert fatigue and increasing provider adoption. Iterative improvements and a postimplementation monitoring dashboard can significantly improve adoption rates.
format Online
Article
Text
id pubmed-6401673
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher JMIR Publications
record_format MEDLINE/PubMed
spelling pubmed-64016732019-03-29 Improving Provider Adoption With Adaptive Clinical Decision Support Surveillance: An Observational Study Khan, Sundas Richardson, Safiya Liu, Andrew Mechery, Vinodh McCullagh, Lauren Schachter, Andy Pardo, Salvatore McGinn, Thomas JMIR Hum Factors Original Paper BACKGROUND: Successful clinical decision support (CDS) tools can help use evidence-based medicine to effectively improve patient outcomes. However, the impact of these tools has been limited by low provider adoption due to overtriggering, leading to alert fatigue. We developed a tracking mechanism for monitoring trigger (percent of total visits for which the tool triggers) and adoption (percent of completed tools) rates of a complex CDS tool based on the Wells criteria for pulmonary embolism (PE). OBJECTIVE: We aimed to monitor and evaluate the adoption and trigger rates of the tool and assess whether ongoing tool modifications would improve adoption rates. METHODS: As part of a larger clinical trial, a CDS tool was developed using the Wells criteria to calculate pretest probability for PE at 2 tertiary centers’ emergency departments (EDs). The tool had multiple triggers: any order for D-dimer, computed tomography (CT) of the chest with intravenous contrast, CT pulmonary angiography (CTPA), ventilation-perfusion scan, or lower extremity Doppler ultrasound. A tracking dashboard was developed using Tableau to monitor real-time trigger and adoption rates. Based on initial low provider adoption rates of the tool, we conducted small focus groups with key ED providers to elicit barriers to tool use. We identified overtriggering of the tool for non-PE-related evaluations and inability to order CT testing for intermediate-risk patients. Thus, the tool was modified to allow CT testing for the intermediate-risk group and not to trigger for CT chest with intravenous contrast orders. A dialogue box, “Are you considering PE for this patient?” was added before the tool triggered to account for CTPAs ordered for aortic dissection evaluation. RESULTS: In the ED of tertiary center 1, 95,295 patients visited during the academic year. The tool triggered for an average of 509 patients per month (average trigger rate 2036/30,234, 6.73%) before the modifications, reducing to 423 patients per month (average trigger rate 1629/31,361, 5.22%). In the ED of tertiary center 2, 88,956 patients visited during the academic year, with the tool triggering for about 473 patients per month (average trigger rate 1892/29,706, 6.37%) before the modifications and for about 400 per month (average trigger rate 1534/30,006, 5.12%) afterward. The modifications resulted in a significant 4.5- and 3-fold increase in provider adoption rates in tertiary centers 1 and 2, respectively. The modifications increased the average monthly adoption rate from 23.20/360 (6.5%) tools to 81.60/280.20 (29.3%) tools and 46.60/318.80 (14.7%) tools to 111.20/263.40 (42.6%) tools in centers 1 and 2, respectively. CONCLUSIONS: Close postimplementation monitoring of CDS tools may help improve provider adoption. Adaptive modifications based on user feedback may increase targeted CDS with lower trigger rates, reducing alert fatigue and increasing provider adoption. Iterative improvements and a postimplementation monitoring dashboard can significantly improve adoption rates. JMIR Publications 2019-02-20 /pmc/articles/PMC6401673/ /pubmed/30785410 http://dx.doi.org/10.2196/10245 Text en ©Sundas Khan, Safiya Richardson, Andrew Liu, Vinodh Mechery, Lauren McCullagh, Andy Schachter, Salvatore Pardo, Thomas McGinn. Originally published in JMIR Human Factors (http://humanfactors.jmir.org), 20.02.2019. https://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Human Factors, is properly cited. The complete bibliographic information, a link to the original publication on http://humanfactors.jmir.org, as well as this copyright and license information must be included.
spellingShingle Original Paper
Khan, Sundas
Richardson, Safiya
Liu, Andrew
Mechery, Vinodh
McCullagh, Lauren
Schachter, Andy
Pardo, Salvatore
McGinn, Thomas
Improving Provider Adoption With Adaptive Clinical Decision Support Surveillance: An Observational Study
title Improving Provider Adoption With Adaptive Clinical Decision Support Surveillance: An Observational Study
title_full Improving Provider Adoption With Adaptive Clinical Decision Support Surveillance: An Observational Study
title_fullStr Improving Provider Adoption With Adaptive Clinical Decision Support Surveillance: An Observational Study
title_full_unstemmed Improving Provider Adoption With Adaptive Clinical Decision Support Surveillance: An Observational Study
title_short Improving Provider Adoption With Adaptive Clinical Decision Support Surveillance: An Observational Study
title_sort improving provider adoption with adaptive clinical decision support surveillance: an observational study
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6401673/
https://www.ncbi.nlm.nih.gov/pubmed/30785410
http://dx.doi.org/10.2196/10245
work_keys_str_mv AT khansundas improvingprovideradoptionwithadaptiveclinicaldecisionsupportsurveillanceanobservationalstudy
AT richardsonsafiya improvingprovideradoptionwithadaptiveclinicaldecisionsupportsurveillanceanobservationalstudy
AT liuandrew improvingprovideradoptionwithadaptiveclinicaldecisionsupportsurveillanceanobservationalstudy
AT mecheryvinodh improvingprovideradoptionwithadaptiveclinicaldecisionsupportsurveillanceanobservationalstudy
AT mccullaghlauren improvingprovideradoptionwithadaptiveclinicaldecisionsupportsurveillanceanobservationalstudy
AT schachterandy improvingprovideradoptionwithadaptiveclinicaldecisionsupportsurveillanceanobservationalstudy
AT pardosalvatore improvingprovideradoptionwithadaptiveclinicaldecisionsupportsurveillanceanobservationalstudy
AT mcginnthomas improvingprovideradoptionwithadaptiveclinicaldecisionsupportsurveillanceanobservationalstudy